100+ datasets found
  1. s

    Data from: Employment by occupation

    • ethnicity-facts-figures.service.gov.uk
    csv
    Updated Jul 27, 2022
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    Race Disparity Unit (2022). Employment by occupation [Dataset]. https://www.ethnicity-facts-figures.service.gov.uk/work-pay-and-benefits/employment/employment-by-occupation/latest
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    csv(309 KB)Available download formats
    Dataset updated
    Jul 27, 2022
    Dataset authored and provided by
    Race Disparity Unit
    License

    Open Government Licence 3.0http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/
    License information was derived automatically

    Area covered
    United Kingdom
    Description

    39.8% of workers from the Indian ethnic group were in 'professional' jobs in 2021 – the highest percentage out of all ethnic groups in this role.

  2. u

    All Jobs Projections (City Area) - RTP 2023

    • data.wfrc.utah.gov
    Updated May 17, 2024
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    Wasatch Front Regional Council (2024). All Jobs Projections (City Area) - RTP 2023 [Dataset]. https://data.wfrc.utah.gov/datasets/80ec4c5b704748cf9ae43ed41a01909b
    Explore at:
    Dataset updated
    May 17, 2024
    Dataset authored and provided by
    Wasatch Front Regional Council
    Description

    Every four years, the Wasatch Front’s two metropolitan planning organizations (MPOs), Wasatch Front Regional Council (WFRC) and Mountainland Association of Governments (MAG), collaborate to update a set of annual small area -- traffic analysis zone and ‘city area’, see descriptions below) -- population and employment projections for the Salt Lake City-West Valley City (WFRC), Ogden-Layton (WFRC), and Provo-Orem (MAG) urbanized areas.

    These projections are primarily developed for the purpose of informing long-range transportation infrastructure and services planning done as part of the 4 year Regional Transportation Plan update cycle, as well as Utah’s Unified Transportation Plan, 2023-2050. Accordingly, the foundation for these projections is largely data describing existing conditions for a 2019 base year, the first year of the latest RTP process. The projections are included in the official travel models, which are publicly released at the conclusion of the RTP process.

    Projections within the Wasatch Front urban area ( SUBAREAID = 1) were produced with using the Real Estate Market Model as described below. Socioeconomic forecasts produced for Cache MPO (Cache County, SUBAREAID = 2), Dixie MPO (Washington County, SUBAREAID = 3), Summit County (SUBAREAID = 4), and UDOT (other areas of the state, SUBAREAID = 0) all adhere to the University of Utah Gardner Policy Institute's county-level projection controls, but other modeling methods are used to arrive at the TAZ-level forecasts for these areas.

    As these projections may be a valuable input to other analyses, this dataset is made available here as a public service for informational purposes only. It is solely the responsibility of the end user to determine the appropriate use of this dataset for other purposes.

    Wasatch Front Real Estate Market Model (REMM) Projections

    WFRC and MAG have developed a spatial statistical model using the UrbanSim modeling platform to assist in producing these annual projections. This model is called the Real Estate Market Model, or REMM for short. REMM is used for the urban portion of Weber, Davis, Salt Lake, and Utah counties. REMM relies on extensive inputs to simulate future development activity across the greater urbanized region. Key inputs to REMM include:

    Demographic data from the decennial census
    County-level population and employment projections -- used as REMM control totals -- are produced by the University of Utah’s Kem C. Gardner Policy Institute (GPI) funded by the Utah State Legislature
    Current employment locational patterns derived from the Utah Department of Workforce Services
    Land use visioning exercises and feedback, especially in regard to planned urban and local center development, with city and county elected officials and staff
    Current land use and valuation GIS-based parcel data stewarded by County Assessors
    Traffic patterns and transit service from the regional Travel Demand Model that together form the landscape of regional accessibility to workplaces and other destinations
    Calibration of model variables to balance the fit of current conditions and dynamics at the county and regional level
    

    ‘Traffic Analysis Zone’ Projections

    The annual projections are forecasted for each of the Wasatch Front’s 3,546 Traffic Analysis Zone (TAZ) geographic units. TAZ boundaries are set along roads, streams, and other physical features and average about 600 acres (0.94 square miles). TAZ sizes vary, with some TAZs in the densest areas representing only a single city block (25 acres).

    ‘City Area’ Projections

    The TAZ-level output from the model is also available for ‘city areas’ that sum the projections for the TAZ geographies that roughly align with each city’s current boundary. As TAZs do not align perfectly with current city boundaries, the ‘city area’ summaries are not projections specific to a current or future city boundary, but the ‘city area’ summaries may be suitable surrogates or starting points upon which to base city-specific projections.

    Summary Variables in the Datasets

    Annual projection counts are available for the following variables (please read Key Exclusions note below):

    Demographics

    Household Population Count (excludes persons living in group quarters) 
    Household Count (excludes group quarters) 
    

    Employment

    Typical Job Count (includes job types that exhibit typical commuting and other travel/vehicle use patterns)
    Retail Job Count (retail, food service, hotels, etc)
    Office Job Count (office, health care, government, education, etc)
    Industrial Job Count (manufacturing, wholesale, transport, etc)
    Non-Typical Job Count* (includes agriculture, construction, mining, and home-based jobs) This can be calculated by subtracting Typical Job Count from All Employment Count 
    All Employment Count* (all jobs, this sums jobs from typical and non-typical sectors).
    
    • These variables includes REMM’s attempt to estimate construction jobs in areas that experience new and re-development activity. Areas may see short-term fluctuations in Non-Typical and All Employment counts due to the temporary location of construction jobs.

    Key Exclusions from TAZ and ‘City Area’ Projections

    As the primary purpose for the development of these population and employment projections is to model future travel in the region, REMM-based projections do not include population or households that reside in group quarters (prisons, senior centers, dormitories, etc), as residents of these facilities typically have a very low impact on regional travel. USTM-based projections also excludes group quarter populations. Group quarters population estimates are available at the county-level from GPI and at various sub-county geographies from the Census Bureau.

    Statewide Projections

    Population and employment projections for the Wasatch Front area can be combined with those developed by Dixie MPO (St. George area), Cache MPO (Logan area), and the Utah Department of Transportation (for the remainder of the state) into one database for use in the Utah Statewide Travel Model (USTM). While projections for the areas outside of the Wasatch Front use different forecasting methods, they contain the same summary-level population and employment projections making similar TAZ and ‘City Area’ data available statewide. WFRC plans, in the near future, to add additional areas to these projections datasets by including the projections from the USTM model.

  3. g

    Persons at Work or Unemployed by Occupation & Sex, Small Areas, Census 2016,...

    • ga.geohive.ie
    • geohive.ie
    Updated Aug 1, 2017
    + more versions
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    censuscurator_geohive (2017). Persons at Work or Unemployed by Occupation & Sex, Small Areas, Census 2016, Theme 13.1, Ireland, 2016, CSO & Tailte Éireann [Dataset]. https://ga.geohive.ie/datasets/persons-at-work-or-unemployed-by-occupation-sex-small-areas-census-2016-theme-13-1-ireland-2016-cso-osi
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    Dataset updated
    Aug 1, 2017
    Dataset authored and provided by
    censuscurator_geohive
    Area covered
    Description

    Please be advised that there are issues with the Small Area boundary dataset generalised to 20m which affect Small Area 268014010 in Ballygall D, Dublin City. The Small Area boundary dataset generalised to 20m is in the process of being revised and the updated datasets will be available as soon as the boundaries are amended.This feature layer was created using Census 2016 data produced by the Central Statistics Office (CSO) and Small Areas national boundary data (generalised to 20m) produced by Tailte Éireann. The layer represents Census 2016 theme 13.1, persons at work or unemployed by occupation and sex. Attributes include a breakdown of population by occupation and sex (e.g. sales and customer service occupations - males, professional occupations - females, managers, directors and senior officials - total). Census 2016 theme 13 represents Occupation. The Census is carried out every five years by the CSO to determine an account of every person in Ireland. The results provide information on a range of themes, such as, population, housing and education. The data were sourced from the CSO. The Small Area Boundaries were created with the following credentials. National boundary dataset. Consistent sub-divisions of an ED. Created not to cross some natural features. Defined area with a minimum number of GeoDirectory building address points. Defined area initially created with minimum of 65 – approx. average of around 90 residential address points. Generated using two bespoke algorithms which incorporated the ED and Townland boundaries, ortho-photography, large scale vector data and GeoDirectory data. Before the 2011 census they were split in relation to motorways and dual carriageways. After the census some boundaries were merged and other divided to maintain privacy of the residential area occupants. They are available as generalised and non generalised boundary sets.

  4. w

    Industrial Jobs Projections (City Area)

    • data.wfrc.org
    Updated Apr 17, 2019
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    Wasatch Front Regional Council (2019). Industrial Jobs Projections (City Area) [Dataset]. https://data.wfrc.org/datasets/industrial-jobs-projections-city-area/explore
    Explore at:
    Dataset updated
    Apr 17, 2019
    Dataset authored and provided by
    Wasatch Front Regional Council
    Area covered
    Description

    Important Dataset Update 6/24/2020:Summit and Wasatch Counties updated.Important Dataset Update 6/12/2020:MAG area updated.Important Dataset Update 7/15/2019: This dataset now includes projections for all populated statewide traffic analysis zones (TAZs). Projections within the Wasatch Front urban area ( SUBAREAID = 1) were produced with using the Real Estate Market Model as described below. Socioeconomic forecasts produced for Cache MPO (Cache County, SUBAREAID = 2), Dixie MPO (Washington County, SUBAREAID = 3), Summit County (SUBAREAID = 4), and UDOT (other areas of the state, SUBAREAID = 0) all adhere to the University of Utah Gardner Policy Institute's county-level projection controls, but other modeling methods are used to arrive at the TAZ-level forecasts for these areas.As with any dataset that presents projections into the future, it is important to have a full understanding of the data before using it. Before using this data, you are strongly encouraged to read the metadata description below and direct any questions or feedback about this data to analytics@wfrc.org. Every four years, the Wasatch Front’s two metropolitan planning organizations (MPOs), Wasatch Front Regional Council (WFRC) and Mountainland Association of Governments (MAG), collaborate to update a set of annual small area -- traffic analysis zone and ‘city area’, see descriptions below) -- population and employment projections for the Salt Lake City-West Valley City (WFRC), Ogden-Layton (WFRC), and Provo-Orem (MAG) urbanized areas. These projections are primarily developed for the purpose of informing long-range transportation infrastructure and services planning done as part of the 4 year Regional Transportation Plan update cycle, as well as Utah’s Unified Transportation Plan, 2019-2050. Accordingly, the foundation for these projections is largely data describing existing conditions for a 2015 base year, the first year of the latest RTP process. The projections are included in the official travel models, which are publicly released at the conclusion of the RTP process. As these projections may be a valuable input to other analyses, this dataset is made available at http://data.wfrc.org/search?q=projections as a public service for informational purposes only. It is solely the responsibility of the end user to determine the appropriate use of this dataset for other purposes. Wasatch Front Real Estate Market Model (REMM) ProjectionsWFRC and MAG have developed a spatial statistical model using the UrbanSim modeling platform to assist in producing these annual projections. This model is called the Real Estate Market Model, or REMM for short. REMM is used for the urban portion of Weber, Davis, Salt Lake, and Utah counties. REMM relies on extensive inputs to simulate future development activity across the greater urbanized region. Key inputs to REMM include:Demographic data from the decennial census;County-level population and employment projections -- used as REMM control totals -- are produced by the University of Utah’s Kem C. Gardner Policy Institute (GPI) funded by the Utah State Legislature;Current employment locational patterns derived from the Utah Department of Workforce Services; Land use visioning exercises and feedback, especially in regard to planned urban and local center development, with city and county elected officials and staff;Current land use and valuation GIS-based parcel data stewarded by County Assessors;Traffic patterns and transit service from the regional Travel Demand Model that together form the landscape of regional accessibility to workplaces and other destinations; andCalibration of model variables to balance the fit of current conditions and dynamics at the county and regional level.‘Traffic Analysis Zone’ ProjectionsThe annual projections are forecasted for each of the Wasatch Front’s 2,800+ Traffic Analysis Zone (TAZ) geographic units. TAZ boundaries are set along roads, streams, and other physical features and average about 600 acres (0.94 square miles). TAZ sizes vary, with some TAZs in the densest areas representing only a single city block (25 acres). ‘City Area’ ProjectionsThe TAZ-level output from the model is also available for ‘city areas’ that sum the projections for the TAZ geographies that roughly align with each city’s current boundary. As TAZs do not align perfectly with current city boundaries, the ‘city area’ summaries are not projections specific to a current or future city boundary, but the ‘city area’ summaries may be suitable surrogates or starting points upon which to base city-specific projections.Summary Variables in the DatasetsAnnual projection counts are available for the following variables (please read Key Exclusions note below):DemographicsHousehold Population Count (excludes persons living in group quarters)Household Count (excludes group quarters)EmploymentTypical Job Count (includes job types that exhibit typical commuting and other travel/vehicle use patterns)Retail Job Count (retail, food service, hotels, etc)Office Job Count (office, health care, government, education, etc)Industrial Job Count (manufacturing, wholesale, transport, etc)Non-Typical Job Count* (includes agriculture, construction, mining, and home-based jobs) This can be calculated by subtracting Typical Job Count from All Employment Count.All Employment Count* (all jobs, this sums jobs from typical and non-typical sectors).* These variable includes REMM’s attempt to estimate construction jobs in areas that experience new and re-development activity. Areas may see short-term fluctuations in Non-Typical and All Employment counts due to the temporary location of construction jobs.Population and employment projections for the Wasatch Front area can be combined with those developed by Dixie MPO (St. George area), Cache MPO (Logan area), and the Utah Department of Transportation (for the remainder of the state) into one database for use in the Utah Statewide Travel Model (USTM). While projections for the areas outside of the Wasatch Front use different forecasting methods, they contain the same summary-level population and employment projections making similar TAZ and ‘City Area’ data available statewide. WFRC plans, in the near future, to add additional areas to these projections datasets by including the projections from the USTM model.Key Exclusions from TAZ and ‘City Area’ ProjectionsAs the primary purpose for the development of these population and employment projections is to model future travel in the region, REMM-based projections do not include population or households that reside in group quarters (prisons, senior centers, dormitories, etc), as residents of these facilities typically have a very low impact on regional travel. USTM-based projections also excludes group quarter populations. Group quarters population estimates are available at the county-level from GPI and at various sub-county geographies from the Census Bureau.

  5. u

    NonTypical Jobs Projections (City Area) - RTP 2023

    • data.wfrc.utah.gov
    Updated May 17, 2024
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    Wasatch Front Regional Council (2024). NonTypical Jobs Projections (City Area) - RTP 2023 [Dataset]. https://data.wfrc.utah.gov/datasets/13695274194946d1b87ca6fd99179a6d
    Explore at:
    Dataset updated
    May 17, 2024
    Dataset authored and provided by
    Wasatch Front Regional Council
    Description

    Every four years, the Wasatch Front’s two metropolitan planning organizations (MPOs), Wasatch Front Regional Council (WFRC) and Mountainland Association of Governments (MAG), collaborate to update a set of annual small area -- traffic analysis zone and ‘city area’, see descriptions below) -- population and employment projections for the Salt Lake City-West Valley City (WFRC), Ogden-Layton (WFRC), and Provo-Orem (MAG) urbanized areas.

    These projections are primarily developed for the purpose of informing long-range transportation infrastructure and services planning done as part of the 4 year Regional Transportation Plan update cycle, as well as Utah’s Unified Transportation Plan, 2023-2050. Accordingly, the foundation for these projections is largely data describing existing conditions for a 2019 base year, the first year of the latest RTP process. The projections are included in the official travel models, which are publicly released at the conclusion of the RTP process.

    Projections within the Wasatch Front urban area ( SUBAREAID = 1) were produced with using the Real Estate Market Model as described below. Socioeconomic forecasts produced for Cache MPO (Cache County, SUBAREAID = 2), Dixie MPO (Washington County, SUBAREAID = 3), Summit County (SUBAREAID = 4), and UDOT (other areas of the state, SUBAREAID = 0) all adhere to the University of Utah Gardner Policy Institute's county-level projection controls, but other modeling methods are used to arrive at the TAZ-level forecasts for these areas.

    As these projections may be a valuable input to other analyses, this dataset is made available here as a public service for informational purposes only. It is solely the responsibility of the end user to determine the appropriate use of this dataset for other purposes.

    Wasatch Front Real Estate Market Model (REMM) Projections

    WFRC and MAG have developed a spatial statistical model using the UrbanSim modeling platform to assist in producing these annual projections. This model is called the Real Estate Market Model, or REMM for short. REMM is used for the urban portion of Weber, Davis, Salt Lake, and Utah counties. REMM relies on extensive inputs to simulate future development activity across the greater urbanized region. Key inputs to REMM include:

    Demographic data from the decennial census
    County-level population and employment projections -- used as REMM control totals -- are produced by the University of Utah’s Kem C. Gardner Policy Institute (GPI) funded by the Utah State Legislature
    Current employment locational patterns derived from the Utah Department of Workforce Services
    Land use visioning exercises and feedback, especially in regard to planned urban and local center development, with city and county elected officials and staff
    Current land use and valuation GIS-based parcel data stewarded by County Assessors
    Traffic patterns and transit service from the regional Travel Demand Model that together form the landscape of regional accessibility to workplaces and other destinations
    Calibration of model variables to balance the fit of current conditions and dynamics at the county and regional level
    

    ‘Traffic Analysis Zone’ Projections

    The annual projections are forecasted for each of the Wasatch Front’s 3,546 Traffic Analysis Zone (TAZ) geographic units. TAZ boundaries are set along roads, streams, and other physical features and average about 600 acres (0.94 square miles). TAZ sizes vary, with some TAZs in the densest areas representing only a single city block (25 acres).

    ‘City Area’ Projections

    The TAZ-level output from the model is also available for ‘city areas’ that sum the projections for the TAZ geographies that roughly align with each city’s current boundary. As TAZs do not align perfectly with current city boundaries, the ‘city area’ summaries are not projections specific to a current or future city boundary, but the ‘city area’ summaries may be suitable surrogates or starting points upon which to base city-specific projections.

    Summary Variables in the Datasets

    Annual projection counts are available for the following variables (please read Key Exclusions note below):

    Demographics

    Household Population Count (excludes persons living in group quarters) 
    Household Count (excludes group quarters) 
    

    Employment

    Typical Job Count (includes job types that exhibit typical commuting and other travel/vehicle use patterns)
    Retail Job Count (retail, food service, hotels, etc)
    Office Job Count (office, health care, government, education, etc)
    Industrial Job Count (manufacturing, wholesale, transport, etc)
    Non-Typical Job Count* (includes agriculture, construction, mining, and home-based jobs) This can be calculated by subtracting Typical Job Count from All Employment Count 
    All Employment Count* (all jobs, this sums jobs from typical and non-typical sectors).
    
    • These variables includes REMM’s attempt to estimate construction jobs in areas that experience new and re-development activity. Areas may see short-term fluctuations in Non-Typical and All Employment counts due to the temporary location of construction jobs.

    Key Exclusions from TAZ and ‘City Area’ Projections

    As the primary purpose for the development of these population and employment projections is to model future travel in the region, REMM-based projections do not include population or households that reside in group quarters (prisons, senior centers, dormitories, etc), as residents of these facilities typically have a very low impact on regional travel. USTM-based projections also excludes group quarter populations. Group quarters population estimates are available at the county-level from GPI and at various sub-county geographies from the Census Bureau.

    Statewide Projections

    Population and employment projections for the Wasatch Front area can be combined with those developed by Dixie MPO (St. George area), Cache MPO (Logan area), and the Utah Department of Transportation (for the remainder of the state) into one database for use in the Utah Statewide Travel Model (USTM). While projections for the areas outside of the Wasatch Front use different forecasting methods, they contain the same summary-level population and employment projections making similar TAZ and ‘City Area’ data available statewide. WFRC plans, in the near future, to add additional areas to these projections datasets by including the projections from the USTM model.

  6. U.S. wage and salary workers median hourly earnings 1979-2023

    • statista.com
    Updated Jun 24, 2025
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    Abigail Tierney (2025). U.S. wage and salary workers median hourly earnings 1979-2023 [Dataset]. https://www.statista.com/topics/771/employment/
    Explore at:
    Dataset updated
    Jun 24, 2025
    Dataset provided by
    Statistahttp://statista.com/
    Authors
    Abigail Tierney
    Area covered
    United States
    Description

    In 2023, the median hourly earnings of wage and salary workers in the United States was 19.24 U.S. dollars. This is an increase from 1979, when median hourly earnings were at 4.44 U.S. dollars. Hourly Workers The United States national minimum wage is 7.25 U.S. dollars per hour, which has been the minimum wage since 2009. However, each state has the agency to set their state minimum wage. Furthermore, some cities are able to create their minimum wage. Many argue that the minimum wage is too low and should be raised, because it is not considered a living wage. There has been a movement to raise the minimum wage to 15 U.S. dollars per hour, called “Fight for 15” which began in the early 2010s. While there has been no movement at the federal level, some states have moved to increase their minimum wages, with at least three states and the District of Columbia setting minimum wage rates at or above 15 dollars per hour. More recently, some proponents of increasing the minimum wage say that 15 dollars is too low, and lawmakers should strive toward a higher goal, especially given that a 2021 analysis found that the minimum wage in the U.S. should be 22.88 U.S. dollars if it grew at the same rate as economic productivity. Salary Workers On the other hand, salary workers in the United States do not get paid on an hourly basis. The median weekly earnings of salary workers have significantly increased since 1979. Asian salary workers had the highest hourly earnings in the U.S. in 2021. Among female salary workers, those ages 45 to 54 years old had the highest median hourly earnings in 2021, likewise for male salary workers.

  7. a

    Occupation by mobility status 5 years ago, Hamilton ON, 2022

    • hamiltondatacatalog-mcmaster.hub.arcgis.com
    Updated Aug 2, 2024
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    koke_McMaster (2024). Occupation by mobility status 5 years ago, Hamilton ON, 2022 [Dataset]. https://hamiltondatacatalog-mcmaster.hub.arcgis.com/items/a4637a2eceaa463b84be39895eaa8b22
    Explore at:
    Dataset updated
    Aug 2, 2024
    Dataset authored and provided by
    koke_McMaster
    Area covered
    Hamilton
    Description

    Occupation (training, education, experience and responsibility category - TEER) by mobility status 5 years ago, place of residence 5 years ago and labour force status: Canada, provinces and territories, census metropolitan areas and census agglomerations with parts (1, 2) Frequency: Occasional Table: 98-10-0450-01 Release date: 2022-11-30 Geography: Canada, Province or territory, Census metropolitan area, Census agglomeration, Census metropolitan area part, Census agglomeration part Universe: Labour force aged 15 years and over in private households, 2021 Census — 25% Sample data Variable List: Mobility status 5 years ago (9), Place of residence 5 years ago (15), Labour force status (3), Age (15A), Gender (3), Statistics (3), Occupation - TEER category - National Occupational Classification (NOC) 2021 (9A) Abbreviation notes: List of abbreviations and acronyms found within various Census products. (https://www12.statcan.gc.ca/census-recensement/2021/ref/symb-ab-acr-eng.cfm) iBall: i70 Geography name: Hamilton; Geographic area type: Census metropolitan area; Geographic area type abbreviation: CMA; Geographic level: Census metropolitan area; Province or territory abbreviation: Ont.; Dissemination Geography Unique Identifier (DGUID): 2021S0503537; Alternative geographic code: 537; Province or territory geocode: 35; Long-form total non-response rate: 3.0; Data quality flag: 00000; Data quality note: ... Footnotes: 1 Mobility Users are advised that when analyzing mobility data in connection with characteristics of the population that may change over time (i.e., marital status, educational attainment, labour force participation, etc.), these characteristics represent the status of an individual at the time of the census, not at the time of the migration. 2 Migration data for small geographic areas Estimates of internal migration may be less accurate for small geographic areas, areas with a place name that is a duplicate elsewhere, and for some census subdivisions (CSDs) where residents may have provided the name of the census metropolitan area or census agglomeration instead of the specific name of the component CSD from which they migrated. 3 Labour force status Labour force status refers to whether a person was employed, unemployed or not in the labour force during the reference period. The labour force consists of persons who contribute or are available to contribute to the production of goods and services falling within the System of National Accounts production boundary. 4 Age 'Age' refers to the age of a person (or subject) of interest at last birthday (or relative to a specified, well-defined reference date). 5 Gender Gender refers to an individual's personal and social identity as a man, woman or non-binary person (a person who is not exclusively a man or a woman). Gender includes the following concepts: gender identity, which refers to the gender that a person feels internally and individually; gender expression, which refers to the way a person presents their gender, regardless of their gender identity, through body language, aesthetic choices or accessories (e.g., clothes, hairstyle and makeup), which may have traditionally been associated with a specific gender. A person's gender may differ from their sex at birth, and from what is indicated on their current identification or legal documents such as their birth certificate, passport or driver's licence. A person's gender may change over time. Some people may not identify with a specific gender. 6 Given that the non-binary population is small, data aggregation to a two-category gender variable is sometimes necessary to protect the confidentiality of responses provided. In these cases, individuals in the category “non-binary persons” are distributed into the other two gender categories and are denoted by the “+” symbol. 7 Mobility status, five years 'Mobility status, five years' refers to the status of a person with regard to the place of residence on the reference day in relation to the place of residence on the same date five years earlier. 8 Occupation (based on the National Occupational Classification [NOC] 2021 Version 1.0) Occupation refers to the kind of work performed in a job, a job being all the tasks carried out by a particular worker to complete his or her duties. An occupation is a set of jobs that are sufficiently similar in work performed. Kind of work is described in terms of tasks, duties and responsibilities, often including factors such as materials processed or used, the industrial processes used, the equipment used, and the products or services provided. Occupations are generally homogeneous with respect to skill type and skill level. Occupation applies to the contribution of labour to that part of economic activity that is within the production boundary defined for the System of National Accounts. 9 For information on the comparability of the 2021 Census labour force status data with those of the Labour Force Survey, see Appendix 2.11 of the Dictionary, Census of Population, 2021. 10 Refers to whether a person aged 15 years and over who is in the labour force was employed or unemployed during the week of Sunday, May 2 to Saturday, May 8, 2021. 11 Refers to the kind of work performed by persons aged 15 years and over as determined by their kind of work and the description of the main activities in their job. The occupation data are produced according to the variant of the National Occupational Classification (NOC) 2021 Version 1.0 for Analysis by TEER (Training, Education, Experience and Responsibility) categories. 12 Includes persons aged 15 years and over who never worked for pay or in self-employment, or last worked for pay or in self-employment prior to 2020. 13 Includes persons aged 15 years and over who have worked at some point in time between January 2020 and May 2021. 14 Management occupations refer to occupations with management responsibilities, including legislators, senior managers and middle managers. 15 Professional occupations require completion of a university degree (bachelor's, master's or doctorate); or previous experience and expertise in subject matter knowledge from a related occupation found in TEER 2 (when applicable). 16 Occupations in TEER 2 usually require completion of a post-secondary education program of two to three years at community college, institute of technology or CÉGEP; or completion of an apprenticeship training program of two to five years; or occupations with supervisory or significant safety (e.g. police officers and firefighters) responsibilities; or several years of experience in a related occupation from TEER 3 (when applicable). 17 Occupations in TEER 3 usually require completion of a post-secondary education program of less than two years at community college, institute of technology or CÉGEP; or completion of an apprenticeship training program of less than two years; or more than six months of on-the-job training, training courses or specific work experience with some secondary school education; or several years of experience in a related occupation from TEER 4 (when applicable). 18 Occupations in TEER 4 usually require completion of secondary school; or several weeks of on-the-job training with some secondary school education; or experience in a related occupation from TEER 5 (when applicable). 19 Occupations in TEER 5 usually require short work demonstration and no formal educational requirements.

  8. Hong Kong Working Population Distribution by Occupation by Small TPU in 2016...

    • opendata.esrichina.hk
    • hub.arcgis.com
    Updated Nov 5, 2021
    + more versions
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    Esri China (Hong Kong) Ltd. (2021). Hong Kong Working Population Distribution by Occupation by Small TPU in 2016 [Dataset]. https://opendata.esrichina.hk/maps/8c09d711467c4b02a30545c8d8035cbe
    Explore at:
    Dataset updated
    Nov 5, 2021
    Dataset provided by
    Esrihttp://esri.com/
    Authors
    Esri China (Hong Kong) Ltd.
    Area covered
    Description

    This layer shows the Hong Kong Working Population Distribution by Occupation by Small Tertiary Planning Unit Group in 2016. It is a subset of the census data 2016 made available by the Census and Statistics Department under the Government of Hong Kong Special Administrative Region (the “Government”) at https://DATA.GOV.HK/ (“DATA.GOV.HK”). The source data is in XLSX format and has been processed and converted into Esri File Geodatabase format and then uploaded to Esri’s ArcGIS Online platform for sharing and reference purpose. The objectives are to facilitate our Hong Kong ArcGIS Online users to use the data in a spatial ready format and save their data conversion effort.For details about the data, source format and terms of conditions of usage, please refer to the website of DATA.GOV.HK at https://data.gov.hk.

  9. F

    Employment-Population Ratio

    • fred.stlouisfed.org
    json
    Updated Sep 5, 2025
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    (2025). Employment-Population Ratio [Dataset]. https://fred.stlouisfed.org/series/EMRATIO
    Explore at:
    jsonAvailable download formats
    Dataset updated
    Sep 5, 2025
    License

    https://fred.stlouisfed.org/legal/#copyright-public-domainhttps://fred.stlouisfed.org/legal/#copyright-public-domain

    Description

    Graph and download economic data for Employment-Population Ratio (EMRATIO) from Jan 1948 to Aug 2025 about employment-population ratio, civilian, 16 years +, household survey, population, employment, and USA.

  10. u

    Office Jobs Projections (TAZ) - RTP 2023

    • data.wfrc.utah.gov
    Updated May 17, 2024
    + more versions
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    Wasatch Front Regional Council (2024). Office Jobs Projections (TAZ) - RTP 2023 [Dataset]. https://data.wfrc.utah.gov/datasets/2fa480963e92422cb51677e3af9c7ffb
    Explore at:
    Dataset updated
    May 17, 2024
    Dataset authored and provided by
    Wasatch Front Regional Council
    Description

    Every four years, the Wasatch Front’s two metropolitan planning organizations (MPOs), Wasatch Front Regional Council (WFRC) and Mountainland Association of Governments (MAG), collaborate to update a set of annual small area -- traffic analysis zone and ‘city area’, see descriptions below) -- population and employment projections for the Salt Lake City-West Valley City (WFRC), Ogden-Layton (WFRC), and Provo-Orem (MAG) urbanized areas.

    These projections are primarily developed for the purpose of informing long-range transportation infrastructure and services planning done as part of the 4 year Regional Transportation Plan update cycle, as well as Utah’s Unified Transportation Plan, 2023-2050. Accordingly, the foundation for these projections is largely data describing existing conditions for a 2019 base year, the first year of the latest RTP process. The projections are included in the official travel models, which are publicly released at the conclusion of the RTP process.

    Projections within the Wasatch Front urban area ( SUBAREAID = 1) were produced with using the Real Estate Market Model as described below. Socioeconomic forecasts produced for Cache MPO (Cache County, SUBAREAID = 2), Dixie MPO (Washington County, SUBAREAID = 3), Summit County (SUBAREAID = 4), and UDOT (other areas of the state, SUBAREAID = 0) all adhere to the University of Utah Gardner Policy Institute's county-level projection controls, but other modeling methods are used to arrive at the TAZ-level forecasts for these areas.

    As these projections may be a valuable input to other analyses, this dataset is made available here as a public service for informational purposes only. It is solely the responsibility of the end user to determine the appropriate use of this dataset for other purposes.

    Wasatch Front Real Estate Market Model (REMM) Projections

    WFRC and MAG have developed a spatial statistical model using the UrbanSim modeling platform to assist in producing these annual projections. This model is called the Real Estate Market Model, or REMM for short. REMM is used for the urban portion of Weber, Davis, Salt Lake, and Utah counties. REMM relies on extensive inputs to simulate future development activity across the greater urbanized region. Key inputs to REMM include:

    Demographic data from the decennial census
    County-level population and employment projections -- used as REMM control totals -- are produced by the University of Utah’s Kem C. Gardner Policy Institute (GPI) funded by the Utah State Legislature
    Current employment locational patterns derived from the Utah Department of Workforce Services
    Land use visioning exercises and feedback, especially in regard to planned urban and local center development, with city and county elected officials and staff
    Current land use and valuation GIS-based parcel data stewarded by County Assessors
    Traffic patterns and transit service from the regional Travel Demand Model that together form the landscape of regional accessibility to workplaces and other destinations
    Calibration of model variables to balance the fit of current conditions and dynamics at the county and regional level
    

    ‘Traffic Analysis Zone’ Projections

    The annual projections are forecasted for each of the Wasatch Front’s 3,546 Traffic Analysis Zone (TAZ) geographic units. TAZ boundaries are set along roads, streams, and other physical features and average about 600 acres (0.94 square miles). TAZ sizes vary, with some TAZs in the densest areas representing only a single city block (25 acres).

    ‘City Area’ Projections

    The TAZ-level output from the model is also available for ‘city areas’ that sum the projections for the TAZ geographies that roughly align with each city’s current boundary. As TAZs do not align perfectly with current city boundaries, the ‘city area’ summaries are not projections specific to a current or future city boundary, but the ‘city area’ summaries may be suitable surrogates or starting points upon which to base city-specific projections.

    Summary Variables in the Datasets

    Annual projection counts are available for the following variables (please read Key Exclusions note below):

    Demographics

    Household Population Count (excludes persons living in group quarters) 
    Household Count (excludes group quarters) 
    

    Employment

    Typical Job Count (includes job types that exhibit typical commuting and other travel/vehicle use patterns)
    Retail Job Count (retail, food service, hotels, etc)
    Office Job Count (office, health care, government, education, etc)
    Industrial Job Count (manufacturing, wholesale, transport, etc)
    Non-Typical Job Count* (includes agriculture, construction, mining, and home-based jobs) This can be calculated by subtracting Typical Job Count from All Employment Count 
    All Employment Count* (all jobs, this sums jobs from typical and non-typical sectors).
    
    • These variables includes REMM’s attempt to estimate construction jobs in areas that experience new and re-development activity. Areas may see short-term fluctuations in Non-Typical and All Employment counts due to the temporary location of construction jobs.

    Key Exclusions from TAZ and ‘City Area’ Projections

    As the primary purpose for the development of these population and employment projections is to model future travel in the region, REMM-based projections do not include population or households that reside in group quarters (prisons, senior centers, dormitories, etc), as residents of these facilities typically have a very low impact on regional travel. USTM-based projections also excludes group quarter populations. Group quarters population estimates are available at the county-level from GPI and at various sub-county geographies from the Census Bureau.

    Statewide Projections

    Population and employment projections for the Wasatch Front area can be combined with those developed by Dixie MPO (St. George area), Cache MPO (Logan area), and the Utah Department of Transportation (for the remainder of the state) into one database for use in the Utah Statewide Travel Model (USTM). While projections for the areas outside of the Wasatch Front use different forecasting methods, they contain the same summary-level population and employment projections making similar TAZ and ‘City Area’ data available statewide. WFRC plans, in the near future, to add additional areas to these projections datasets by including the projections from the USTM model.

  11. u

    All Jobs Projections (TAZ) - RTP 2023

    • data.wfrc.utah.gov
    Updated May 17, 2024
    Share
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    Wasatch Front Regional Council (2024). All Jobs Projections (TAZ) - RTP 2023 [Dataset]. https://data.wfrc.utah.gov/datasets/649d2606ccd44010a9a5558dc7abc0e8
    Explore at:
    Dataset updated
    May 17, 2024
    Dataset authored and provided by
    Wasatch Front Regional Council
    Description

    Every four years, the Wasatch Front’s two metropolitan planning organizations (MPOs), Wasatch Front Regional Council (WFRC) and Mountainland Association of Governments (MAG), collaborate to update a set of annual small area -- traffic analysis zone and ‘city area’, see descriptions below) -- population and employment projections for the Salt Lake City-West Valley City (WFRC), Ogden-Layton (WFRC), and Provo-Orem (MAG) urbanized areas.

    These projections are primarily developed for the purpose of informing long-range transportation infrastructure and services planning done as part of the 4 year Regional Transportation Plan update cycle, as well as Utah’s Unified Transportation Plan, 2023-2050. Accordingly, the foundation for these projections is largely data describing existing conditions for a 2019 base year, the first year of the latest RTP process. The projections are included in the official travel models, which are publicly released at the conclusion of the RTP process.

    Projections within the Wasatch Front urban area ( SUBAREAID = 1) were produced with using the Real Estate Market Model as described below. Socioeconomic forecasts produced for Cache MPO (Cache County, SUBAREAID = 2), Dixie MPO (Washington County, SUBAREAID = 3), Summit County (SUBAREAID = 4), and UDOT (other areas of the state, SUBAREAID = 0) all adhere to the University of Utah Gardner Policy Institute's county-level projection controls, but other modeling methods are used to arrive at the TAZ-level forecasts for these areas.

    As these projections may be a valuable input to other analyses, this dataset is made available here as a public service for informational purposes only. It is solely the responsibility of the end user to determine the appropriate use of this dataset for other purposes.

    Wasatch Front Real Estate Market Model (REMM) Projections

    WFRC and MAG have developed a spatial statistical model using the UrbanSim modeling platform to assist in producing these annual projections. This model is called the Real Estate Market Model, or REMM for short. REMM is used for the urban portion of Weber, Davis, Salt Lake, and Utah counties. REMM relies on extensive inputs to simulate future development activity across the greater urbanized region. Key inputs to REMM include:

    Demographic data from the decennial census
    County-level population and employment projections -- used as REMM control totals -- are produced by the University of Utah’s Kem C. Gardner Policy Institute (GPI) funded by the Utah State Legislature
    Current employment locational patterns derived from the Utah Department of Workforce Services
    Land use visioning exercises and feedback, especially in regard to planned urban and local center development, with city and county elected officials and staff
    Current land use and valuation GIS-based parcel data stewarded by County Assessors
    Traffic patterns and transit service from the regional Travel Demand Model that together form the landscape of regional accessibility to workplaces and other destinations
    Calibration of model variables to balance the fit of current conditions and dynamics at the county and regional level
    

    ‘Traffic Analysis Zone’ Projections

    The annual projections are forecasted for each of the Wasatch Front’s 3,546 Traffic Analysis Zone (TAZ) geographic units. TAZ boundaries are set along roads, streams, and other physical features and average about 600 acres (0.94 square miles). TAZ sizes vary, with some TAZs in the densest areas representing only a single city block (25 acres).

    ‘City Area’ Projections

    The TAZ-level output from the model is also available for ‘city areas’ that sum the projections for the TAZ geographies that roughly align with each city’s current boundary. As TAZs do not align perfectly with current city boundaries, the ‘city area’ summaries are not projections specific to a current or future city boundary, but the ‘city area’ summaries may be suitable surrogates or starting points upon which to base city-specific projections.

    Summary Variables in the Datasets

    Annual projection counts are available for the following variables (please read Key Exclusions note below):

    Demographics

    Household Population Count (excludes persons living in group quarters) 
    Household Count (excludes group quarters) 
    

    Employment

    Typical Job Count (includes job types that exhibit typical commuting and other travel/vehicle use patterns)
    Retail Job Count (retail, food service, hotels, etc)
    Office Job Count (office, health care, government, education, etc)
    Industrial Job Count (manufacturing, wholesale, transport, etc)
    Non-Typical Job Count* (includes agriculture, construction, mining, and home-based jobs) This can be calculated by subtracting Typical Job Count from All Employment Count 
    All Employment Count* (all jobs, this sums jobs from typical and non-typical sectors).
    
    • These variables includes REMM’s attempt to estimate construction jobs in areas that experience new and re-development activity. Areas may see short-term fluctuations in Non-Typical and All Employment counts due to the temporary location of construction jobs.

    Key Exclusions from TAZ and ‘City Area’ Projections

    As the primary purpose for the development of these population and employment projections is to model future travel in the region, REMM-based projections do not include population or households that reside in group quarters (prisons, senior centers, dormitories, etc), as residents of these facilities typically have a very low impact on regional travel. USTM-based projections also excludes group quarter populations. Group quarters population estimates are available at the county-level from GPI and at various sub-county geographies from the Census Bureau.

    Statewide Projections

    Population and employment projections for the Wasatch Front area can be combined with those developed by Dixie MPO (St. George area), Cache MPO (Logan area), and the Utah Department of Transportation (for the remainder of the state) into one database for use in the Utah Statewide Travel Model (USTM). While projections for the areas outside of the Wasatch Front use different forecasting methods, they contain the same summary-level population and employment projections making similar TAZ and ‘City Area’ data available statewide. WFRC plans, in the near future, to add additional areas to these projections datasets by including the projections from the USTM model.

  12. Total employment figures and unemployment rate in the United States...

    • statista.com
    Updated Sep 12, 2025
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    Statista (2025). Total employment figures and unemployment rate in the United States 1980-2025 [Dataset]. https://www.statista.com/statistics/269959/employment-in-the-united-states/
    Explore at:
    Dataset updated
    Sep 12, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    United States
    Description

    In 2025, it was estimated that over 163 million Americans were in some form of employment, while 4.16 percent of the total workforce was unemployed. This was the lowest unemployment rate since the 1950s, although these figures are expected to rise in 2023 and beyond. 1980s-2010s Since the 1980s, the total United States labor force has generally risen as the population has grown, however, the annual average unemployment rate has fluctuated significantly, usually increasing in times of crisis, before falling more slowly during periods of recovery and economic stability. For example, unemployment peaked at 9.7 percent during the early 1980s recession, which was largely caused by the ripple effects of the Iranian Revolution on global oil prices and inflation. Other notable spikes came during the early 1990s; again, largely due to inflation caused by another oil shock, and during the early 2000s recession. The Great Recession then saw the U.S. unemployment rate soar to 9.6 percent, following the collapse of the U.S. housing market and its impact on the banking sector, and it was not until 2016 that unemployment returned to pre-recession levels. 2020s 2019 had marked a decade-long low in unemployment, before the economic impact of the Covid-19 pandemic saw the sharpest year-on-year increase in unemployment since the Great Depression, and the total number of workers fell by almost 10 million people. Despite the continuation of the pandemic in the years that followed, alongside the associated supply-chain issues and onset of the inflation crisis, unemployment reached just 3.67 percent in 2022 - current projections are for this figure to rise in 2023 and the years that follow, although these forecasts are subject to change if recent years are anything to go by.

  13. r

    LGA-W12a Industry of Employment by Occupation-Census 2016

    • researchdata.edu.au
    • data.aurin.org.au
    null
    Updated Jan 14, 2019
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    Australian Urban Research Infrastructure Network (AURIN) (2019). LGA-W12a Industry of Employment by Occupation-Census 2016 [Dataset]. https://researchdata.edu.au/lga-w12a-industry-census-2016/1428079
    Explore at:
    nullAvailable download formats
    Dataset updated
    Jan 14, 2019
    Dataset provided by
    Australian Urban Research Infrastructure Network (AURIN)
    License

    Attribution 2.5 (CC BY 2.5)https://creativecommons.org/licenses/by/2.5/
    License information was derived automatically

    Area covered
    Description

    LGA based data for Industry of Employment by Occupation, in Working Population Profile (WPP), 2016 Census. Count of employed persons aged 15 years and over. W12 is broken up into 2 sections (W12a - W12b), this section contains 'Agriculture forestry and fishing Managers' - 'Inadequately described Not stated Total'. The data is by LGA 2016 boundaries. Periodicity: 5-Yearly. Note: There are small random adjustments made to all cell values to protect the confidentiality of data. These adjustments may cause the sum of rows or columns to differ by small amounts from table totals. For more information visit the data source: http://www.abs.gov.au/census.

  14. u

    Typical Jobs Projections (City Area) - RTP 2023

    • data.wfrc.utah.gov
    Updated May 16, 2024
    Share
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    Wasatch Front Regional Council (2024). Typical Jobs Projections (City Area) - RTP 2023 [Dataset]. https://data.wfrc.utah.gov/datasets/typical-jobs-projections-city-area-rtp-2023/about
    Explore at:
    Dataset updated
    May 16, 2024
    Dataset authored and provided by
    Wasatch Front Regional Council
    Area covered
    Description

    Every four years, the Wasatch Front’s two metropolitan planning organizations (MPOs), Wasatch Front Regional Council (WFRC) and Mountainland Association of Governments (MAG), collaborate to update a set of annual small area -- traffic analysis zone and ‘city area’, see descriptions below) -- population and employment projections for the Salt Lake City-West Valley City (WFRC), Ogden-Layton (WFRC), and Provo-Orem (MAG) urbanized areas.

    These projections are primarily developed for the purpose of informing long-range transportation infrastructure and services planning done as part of the 4 year Regional Transportation Plan update cycle, as well as Utah’s Unified Transportation Plan, 2023-2050. Accordingly, the foundation for these projections is largely data describing existing conditions for a 2019 base year, the first year of the latest RTP process. The projections are included in the official travel models, which are publicly released at the conclusion of the RTP process.

    Projections within the Wasatch Front urban area ( SUBAREAID = 1) were produced with using the Real Estate Market Model as described below. Socioeconomic forecasts produced for Cache MPO (Cache County, SUBAREAID = 2), Dixie MPO (Washington County, SUBAREAID = 3), Summit County (SUBAREAID = 4), and UDOT (other areas of the state, SUBAREAID = 0) all adhere to the University of Utah Gardner Policy Institute's county-level projection controls, but other modeling methods are used to arrive at the TAZ-level forecasts for these areas.

    As these projections may be a valuable input to other analyses, this dataset is made available here as a public service for informational purposes only. It is solely the responsibility of the end user to determine the appropriate use of this dataset for other purposes.

    Wasatch Front Real Estate Market Model (REMM) Projections

    WFRC and MAG have developed a spatial statistical model using the UrbanSim modeling platform to assist in producing these annual projections. This model is called the Real Estate Market Model, or REMM for short. REMM is used for the urban portion of Weber, Davis, Salt Lake, and Utah counties. REMM relies on extensive inputs to simulate future development activity across the greater urbanized region. Key inputs to REMM include:

    Demographic data from the decennial census
    County-level population and employment projections -- used as REMM control totals -- are produced by the University of Utah’s Kem C. Gardner Policy Institute (GPI) funded by the Utah State Legislature
    Current employment locational patterns derived from the Utah Department of Workforce Services
    Land use visioning exercises and feedback, especially in regard to planned urban and local center development, with city and county elected officials and staff
    Current land use and valuation GIS-based parcel data stewarded by County Assessors
    Traffic patterns and transit service from the regional Travel Demand Model that together form the landscape of regional accessibility to workplaces and other destinations
    Calibration of model variables to balance the fit of current conditions and dynamics at the county and regional level
    

    ‘Traffic Analysis Zone’ Projections

    The annual projections are forecasted for each of the Wasatch Front’s 3,546 Traffic Analysis Zone (TAZ) geographic units. TAZ boundaries are set along roads, streams, and other physical features and average about 600 acres (0.94 square miles). TAZ sizes vary, with some TAZs in the densest areas representing only a single city block (25 acres).

    ‘City Area’ Projections

    The TAZ-level output from the model is also available for ‘city areas’ that sum the projections for the TAZ geographies that roughly align with each city’s current boundary. As TAZs do not align perfectly with current city boundaries, the ‘city area’ summaries are not projections specific to a current or future city boundary, but the ‘city area’ summaries may be suitable surrogates or starting points upon which to base city-specific projections.

    Summary Variables in the Datasets

    Annual projection counts are available for the following variables (please read Key Exclusions note below):

    Demographics

    Household Population Count (excludes persons living in group quarters) 
    Household Count (excludes group quarters) 
    

    Employment

    Typical Job Count (includes job types that exhibit typical commuting and other travel/vehicle use patterns)
    Retail Job Count (retail, food service, hotels, etc)
    Office Job Count (office, health care, government, education, etc)
    Industrial Job Count (manufacturing, wholesale, transport, etc)
    Non-Typical Job Count* (includes agriculture, construction, mining, and home-based jobs) This can be calculated by subtracting Typical Job Count from All Employment Count 
    All Employment Count* (all jobs, this sums jobs from typical and non-typical sectors).
    
    • These variables includes REMM’s attempt to estimate construction jobs in areas that experience new and re-development activity. Areas may see short-term fluctuations in Non-Typical and All Employment counts due to the temporary location of construction jobs.

    Key Exclusions from TAZ and ‘City Area’ Projections

    As the primary purpose for the development of these population and employment projections is to model future travel in the region, REMM-based projections do not include population or households that reside in group quarters (prisons, senior centers, dormitories, etc), as residents of these facilities typically have a very low impact on regional travel. USTM-based projections also excludes group quarter populations. Group quarters population estimates are available at the county-level from GPI and at various sub-county geographies from the Census Bureau.

    Statewide Projections

    Population and employment projections for the Wasatch Front area can be combined with those developed by Dixie MPO (St. George area), Cache MPO (Logan area), and the Utah Department of Transportation (for the remainder of the state) into one database for use in the Utah Statewide Travel Model (USTM). While projections for the areas outside of the Wasatch Front use different forecasting methods, they contain the same summary-level population and employment projections making similar TAZ and ‘City Area’ data available statewide. WFRC plans, in the near future, to add additional areas to these projections datasets by including the projections from the USTM model.

  15. d

    Small Area Business and Labour Data, 1996 [Canada] [B2020]

    • search.dataone.org
    • borealisdata.ca
    Updated Dec 28, 2023
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    Statistics Canada (2023). Small Area Business and Labour Data, 1996 [Canada] [B2020] [Dataset]. https://search.dataone.org/view/sha256%3Ae510262f3eb8ec60aea606bc9c6ea67f1e9a185e9be7533e26432ff1b8b8ba4d
    Explore at:
    Dataset updated
    Dec 28, 2023
    Dataset provided by
    Borealis
    Authors
    Statistics Canada
    Area covered
    Canada
    Description

    SABAL - Small Area Business and Labour Data is a compendium of independent data sources brought together in one database by Statistics Canada. As a compendium, it is not a fully integrated system, therefore, dates and geographic areas covered vary between data sets selected. SABAL combines a wide variety of economic and social statistics, and provides coverage of approximately 140 urban areas and 72 economic regions, in addition to Canada, the Provinces and Territories. Some data are not available at all geographic levels. SABAL also includes metadata on each of these data sources. The business sources included are: Business Small Area File (based on Revenue Canada administrative data), Retail Trade, Building Permits, Housing Starts from CMHC, Survey of Manufacturing, Motor Vehicle Registrations, Business Counts, Consumer Price Index, and Tourism. The social sources included are: Census of Population, Small Area Administrative Data (Taxfiler Data), Labour Force Survey, Household Facilities and Equipment Survey, Education, Training, Justice, Population Projections, Family Expenditures, and Consumer Finances Survey.

  16. U

    United States Unemployment Rate: U2 Job Losers Who Completed Temporary Jobs

    • ceicdata.com
    Updated Mar 15, 2025
    + more versions
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    CEICdata.com (2025). United States Unemployment Rate: U2 Job Losers Who Completed Temporary Jobs [Dataset]. https://www.ceicdata.com/en/united-states/current-population-survey-unemployment-rate/unemployment-rate-u2-job-losers-who-completed-temporary-jobs
    Explore at:
    Dataset updated
    Mar 15, 2025
    Dataset provided by
    CEICdata.com
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Time period covered
    May 1, 2017 - Apr 1, 2018
    Area covered
    United States
    Variables measured
    Unemployment
    Description

    United States Unemployment Rate: U2 Job Losers Who Completed Temporary Jobs data was reported at 1.900 % in Jun 2018. This records an increase from the previous number of 1.500 % for May 2018. United States Unemployment Rate: U2 Job Losers Who Completed Temporary Jobs data is updated monthly, averaging 2.800 % from Jan 1967 (Median) to Jun 2018, with 618 observations. The data reached an all-time high of 7.300 % in Jan 1983 and a record low of 1.000 % in Sep 1969. United States Unemployment Rate: U2 Job Losers Who Completed Temporary Jobs data remains active status in CEIC and is reported by Bureau of Labor Statistics. The data is categorized under Global Database’s USA – Table US.G018: Current Population Survey: Unemployment Rate.

  17. w

    Workforce Jobs

    • data.wu.ac.at
    • gimi9.com
    xls
    Updated Sep 26, 2015
    + more versions
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    London Datastore Archive (2015). Workforce Jobs [Dataset]. https://data.wu.ac.at/odso/datahub_io/YzZjMWU2MjItMWYxYy00MDZiLTk0NTYtYjhkNTdlYTUwN2E3
    Explore at:
    xls(145920.0)Available download formats
    Dataset updated
    Sep 26, 2015
    Dataset provided by
    London Datastore Archive
    License

    http://reference.data.gov.uk/id/open-government-licencehttp://reference.data.gov.uk/id/open-government-licence

    Description

    Workforce Jobs (WFJ) is a quarterly measure of the number of jobs in the UK and is the preferred measure of the change in jobs by industry.

    It is a compound source that draws on a range of employer surveys, household surveys and administrative sources. WFJ is the sum of employee jobs measured primarily by employer surveys, self-employment jobs from the Labour Force Survey, and government-supported trainees and Her Majesty's Forces from administrative sources.

    The spreadsheet shows change since last quarter and last year, with graphs displaying these trends.

    Data is available by industry from NOMIS WEB. Data back to Sep 1981 available for the UK, and back to March 1996 for UK regions (included in spreadsheet).

    Seasonally adjusted. The figures in this dataset are adjusted to compensate for seasonal variations in employment.

    UK totals include overseas based HM Forces personnel that cannot be assigned to a region.
    Supporting information is now available to identify a small number of estimates that are deemed unreliable from https://www.nomisweb.co.uk/articles/654.aspx.

    Data is rounded to the nearest 1000.

    Relevant link: http://www.nomisweb.co.uk/

    Workforce Jobs 2002-2012 and Workplace employment data by borough since 2012. The latter is taken from Annual Population Survey and Business Register and Employment Survey.

  18. u

    Industrial Jobs Projections (City Area) - RTP 2023

    • data.wfrc.utah.gov
    Updated May 16, 2024
    + more versions
    Share
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    TwitterTwitter
    Email
    Click to copy link
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    Close
    Cite
    Wasatch Front Regional Council (2024). Industrial Jobs Projections (City Area) - RTP 2023 [Dataset]. https://data.wfrc.utah.gov/datasets/industrial-jobs-projections-city-area-rtp-2023
    Explore at:
    Dataset updated
    May 16, 2024
    Dataset authored and provided by
    Wasatch Front Regional Council
    Area covered
    Description

    Every four years, the Wasatch Front’s two metropolitan planning organizations (MPOs), Wasatch Front Regional Council (WFRC) and Mountainland Association of Governments (MAG), collaborate to update a set of annual small area -- traffic analysis zone and ‘city area’, see descriptions below) -- population and employment projections for the Salt Lake City-West Valley City (WFRC), Ogden-Layton (WFRC), and Provo-Orem (MAG) urbanized areas.

    These projections are primarily developed for the purpose of informing long-range transportation infrastructure and services planning done as part of the 4 year Regional Transportation Plan update cycle, as well as Utah’s Unified Transportation Plan, 2023-2050. Accordingly, the foundation for these projections is largely data describing existing conditions for a 2019 base year, the first year of the latest RTP process. The projections are included in the official travel models, which are publicly released at the conclusion of the RTP process.

    Projections within the Wasatch Front urban area ( SUBAREAID = 1) were produced with using the Real Estate Market Model as described below. Socioeconomic forecasts produced for Cache MPO (Cache County, SUBAREAID = 2), Dixie MPO (Washington County, SUBAREAID = 3), Summit County (SUBAREAID = 4), and UDOT (other areas of the state, SUBAREAID = 0) all adhere to the University of Utah Gardner Policy Institute's county-level projection controls, but other modeling methods are used to arrive at the TAZ-level forecasts for these areas.

    As these projections may be a valuable input to other analyses, this dataset is made available here as a public service for informational purposes only. It is solely the responsibility of the end user to determine the appropriate use of this dataset for other purposes.

    Wasatch Front Real Estate Market Model (REMM) Projections

    WFRC and MAG have developed a spatial statistical model using the UrbanSim modeling platform to assist in producing these annual projections. This model is called the Real Estate Market Model, or REMM for short. REMM is used for the urban portion of Weber, Davis, Salt Lake, and Utah counties. REMM relies on extensive inputs to simulate future development activity across the greater urbanized region. Key inputs to REMM include:

    Demographic data from the decennial census
    County-level population and employment projections -- used as REMM control totals -- are produced by the University of Utah’s Kem C. Gardner Policy Institute (GPI) funded by the Utah State Legislature
    Current employment locational patterns derived from the Utah Department of Workforce Services
    Land use visioning exercises and feedback, especially in regard to planned urban and local center development, with city and county elected officials and staff
    Current land use and valuation GIS-based parcel data stewarded by County Assessors
    Traffic patterns and transit service from the regional Travel Demand Model that together form the landscape of regional accessibility to workplaces and other destinations
    Calibration of model variables to balance the fit of current conditions and dynamics at the county and regional level
    

    ‘Traffic Analysis Zone’ Projections

    The annual projections are forecasted for each of the Wasatch Front’s 3,546 Traffic Analysis Zone (TAZ) geographic units. TAZ boundaries are set along roads, streams, and other physical features and average about 600 acres (0.94 square miles). TAZ sizes vary, with some TAZs in the densest areas representing only a single city block (25 acres).

    ‘City Area’ Projections

    The TAZ-level output from the model is also available for ‘city areas’ that sum the projections for the TAZ geographies that roughly align with each city’s current boundary. As TAZs do not align perfectly with current city boundaries, the ‘city area’ summaries are not projections specific to a current or future city boundary, but the ‘city area’ summaries may be suitable surrogates or starting points upon which to base city-specific projections.

    Summary Variables in the Datasets

    Annual projection counts are available for the following variables (please read Key Exclusions note below):

    Demographics

    Household Population Count (excludes persons living in group quarters) 
    Household Count (excludes group quarters) 
    

    Employment

    Typical Job Count (includes job types that exhibit typical commuting and other travel/vehicle use patterns)
    Retail Job Count (retail, food service, hotels, etc)
    Office Job Count (office, health care, government, education, etc)
    Industrial Job Count (manufacturing, wholesale, transport, etc)
    Non-Typical Job Count* (includes agriculture, construction, mining, and home-based jobs) This can be calculated by subtracting Typical Job Count from All Employment Count 
    All Employment Count* (all jobs, this sums jobs from typical and non-typical sectors).
    
    • These variables includes REMM’s attempt to estimate construction jobs in areas that experience new and re-development activity. Areas may see short-term fluctuations in Non-Typical and All Employment counts due to the temporary location of construction jobs.

    Key Exclusions from TAZ and ‘City Area’ Projections

    As the primary purpose for the development of these population and employment projections is to model future travel in the region, REMM-based projections do not include population or households that reside in group quarters (prisons, senior centers, dormitories, etc), as residents of these facilities typically have a very low impact on regional travel. USTM-based projections also excludes group quarter populations. Group quarters population estimates are available at the county-level from GPI and at various sub-county geographies from the Census Bureau.

    Statewide Projections

    Population and employment projections for the Wasatch Front area can be combined with those developed by Dixie MPO (St. George area), Cache MPO (Logan area), and the Utah Department of Transportation (for the remainder of the state) into one database for use in the Utah Statewide Travel Model (USTM). While projections for the areas outside of the Wasatch Front use different forecasting methods, they contain the same summary-level population and employment projections making similar TAZ and ‘City Area’ data available statewide. WFRC plans, in the near future, to add additional areas to these projections datasets by including the projections from the USTM model.

  19. a

    NonTypical Jobs Projections (TAZ) - RTP 2019

    • data-wfrc.opendata.arcgis.com
    Updated Jun 12, 2020
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    Wasatch Front Regional Council (2020). NonTypical Jobs Projections (TAZ) - RTP 2019 [Dataset]. https://data-wfrc.opendata.arcgis.com/datasets/nontypical-jobs-projections-taz-rtp-2019
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    Dataset updated
    Jun 12, 2020
    Dataset authored and provided by
    Wasatch Front Regional Council
    Area covered
    Description

    Important Dataset Update 6/24/2020:Summit and Wasatch Counties updated.Important Dataset Update 6/12/2020:MAG area updated.Important Dataset Update 7/15/2019:This dataset now includes projections for all populated statewide traffic analysis zones (TAZs).Projections within the Wasatch Front urban area ( SUBAREAID = 1) were produced with using the Real Estate Market Model as described below.Socioeconomic forecasts produced for Cache MPO (Cache County, SUBAREAID = 2), Dixie MPO (Washington County, SUBAREAID = 3), Summit County (SUBAREAID = 4), and UDOT (other areas of the state, SUBAREAID = 0) all adhere to the University of Utah Gardner Policy Institute's county-level projection controls, but other modeling methods are used to arrive at the TAZ-level forecasts for these areas.As with any dataset that presents projections into the future, it is important to have a full understanding of the data before using it. Before using this data, you are strongly encouraged to read the metadata description below and direct any questions or feedback about this data to analytics@wfrc.org.Every four years, the Wasatch Front’s two metropolitan planning organizations (MPOs), Wasatch Front Regional Council (WFRC) and Mountainland Association of Governments (MAG), collaborate to update a set of annual small area -- traffic analysis zone and ‘city area’, see descriptions below) -- population and employment projections for the Salt Lake City-West Valley City (WFRC), Ogden-Layton (WFRC), and Provo-Orem (MAG) urbanized areas.These projections are primarily developed for the purpose of informing long-range transportation infrastructure and services planning done as part of the 4 year Regional Transportation Plan update cycle, as well as Utah’s Unified Transportation Plan, 2019-2050. Accordingly, the foundation for these projections is largely data describing existing conditions for a 2015 base year, the first year of the latest RTP process. The projections are included in the official travel models, which are publicly released at the conclusion of the RTP process.As these projections may be a valuable input to other analyses, this dataset is made available at http://data.wfrc.org/search?q=projections as a public service for informational purposes only. It is solely the responsibility of the end user to determine the appropriate use of this dataset for other purposes.Wasatch Front Real Estate Market Model (REMM) ProjectionsWFRC and MAG have developed a spatial statistical model using the UrbanSim modeling platform to assist in producing these annual projections. This model is called the Real Estate Market Model, or REMM for short. REMM is used for the urban portion of Weber, Davis, Salt Lake, and Utah counties. REMM relies on extensive inputs to simulate future development activity across the greater urbanized region. Key inputs to REMM include:Demographic data from the decennial census;County-level population and employment projections -- used as REMM control totals -- are produced by the University of Utah’s Kem C. Gardner Policy Institute (GPI) funded by the Utah State Legislature;Current employment locational patterns derived from the Utah Department of Workforce Services;Land use visioning exercises and feedback, especially in regard to planned urban and local center development, with city and county elected officials and staff;Current land use and valuation GIS-based parcel data stewarded by County Assessors;Traffic patterns and transit service from the regional Travel Demand Model that together form the landscape of regional accessibility to workplaces and other destinations; andCalibration of model variables to balance the fit of current conditions and dynamics at the county and regional level.‘Traffic Analysis Zone’ ProjectionsThe annual projections are forecasted for each of the Wasatch Front’s 2,800+ Traffic Analysis Zone (TAZ) geographic units. TAZ boundaries are set along roads, streams, and other physical features and average about 600 acres (0.94 square miles). TAZ sizes vary, with some TAZs in the densest areas representing only a single city block (25 acres).‘City Area’ ProjectionsThe TAZ-level output from the model is also available for ‘city areas’ that sum the projections for the TAZ geographies that roughly align with each city’s current boundary. As TAZs do not align perfectly with current city boundaries, the ‘city area’ summaries are not projections specific to a current or future city boundary, but the ‘city area’ summaries may be suitable surrogates or starting points upon which to base city-specific projections.Summary Variables in the DatasetsAnnual projection counts are available for the following variables (please read Key Exclusions note below):DemographicsHousehold Population Count (excludes persons living in group quarters)Household Count (excludes group quarters)EmploymentTypical Job Count (includes job types that exhibit typical commuting and other travel/vehicle use patterns)Retail Job Count (retail, food service, hotels, etc)Office Job Count (office, health care, government, education, etc)Industrial Job Count (manufacturing, wholesale, transport, etc)Non-Typical Job Count* (includes agriculture, construction, mining, and home-based jobs) This can be calculated by subtracting Typical Job Count from All Employment Count.All Employment Count* (all jobs, this sums jobs from typical and non-typical sectors).* These variable includes REMM’s attempt to estimate construction jobs in areas that experience new and re-development activity. Areas may see short-term fluctuations in Non-Typical and All Employment counts due to the temporary location of construction jobs.Population and employment projections for the Wasatch Front area can be combined with those developed by Dixie MPO (St. George area), Cache MPO (Logan area), and the Utah Department of Transportation (for the remainder of the state) into one database for use in the Utah Statewide Travel Model (USTM). While projections for the areas outside of the Wasatch Front use different forecasting methods, they contain the same summary-level population and employment projections making similar TAZ and ‘City Area’ data available statewide. WFRC plans, in the near future, to add additional areas to these projections datasets by including the projections from the USTM model.Key Exclusions from TAZ and ‘City Area’ ProjectionsAs the primary purpose for the development of these population and employment projections is to model future travel in the region, REMM-based projections do not include population or households that reside in group quarters (prisons, senior centers, dormitories, etc), as residents of these facilities typically have a very low impact on regional travel. USTM-based projections also excludes group quarter populations. Group quarters population estimates are available at the county-level from GPI and at various sub-county geographies from the Census Bureau.

  20. 2

    APS

    • datacatalogue.ukdataservice.ac.uk
    Updated Sep 18, 2025
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    Office for National Statistics (2025). APS [Dataset]. http://doi.org/10.5255/UKDA-SN-9451-1
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    Dataset updated
    Sep 18, 2025
    Dataset provided by
    UK Data Servicehttps://ukdataservice.ac.uk/
    Authors
    Office for National Statistics
    Area covered
    United Kingdom
    Description

    The Annual Population Survey (APS) household datasets are produced annually and are available from 2004 (Special Licence) and 2006 (End User Licence). They allow production of family and household labour market statistics at local areas and for small sub-groups of the population across the UK. The household data comprise key variables from the Labour Force Survey (LFS) and the APS 'person' datasets. The APS household datasets include all the variables on the LFS and APS person datasets, except for the income variables. They also include key family and household-level derived variables. These variables allow for an analysis of the combined economic activity status of the family or household. In addition, they also include more detailed geographical, industry, occupation, health and age variables.

    For further detailed information about methodology, users should consult the Labour Force Survey User Guide, included with the APS documentation. For variable and value labelling and coding frames that are not included either in the data or in the current APS documentation, users are advised to consult the latest versions of the LFS User Guides, which are available from the ONS Labour Force Survey - User Guidance webpages.

    Occupation data for 2021 and 2022
    The ONS has identified an issue with the collection of some occupational data in 2021 and 2022 data files in a number of their surveys. While they estimate any impacts will be small overall, this will affect the accuracy of the breakdowns of some detailed (four-digit Standard Occupational Classification (SOC)) occupations, and data derived from them. None of ONS' headline statistics, other than those directly sourced from occupational data, are affected and you can continue to rely on their accuracy. Further information can be found in the ONS article published on 11 July 2023: Revision of miscoded occupational data in the ONS Labour Force Survey, UK: January 2021 to September 2022

    End User Licence and Secure Access APS data
    Users should note that there are two versions of each APS dataset. One is available under the standard End User Licence (EUL) agreement, and the other is a Secure Access version. The EUL version includes Government Office Region geography, banded age, 3-digit SOC and industry sector for main, second and last job. The Secure Access version contains more detailed variables relating to:

    • age: single year of age, year and month of birth, age completed full-time education and age obtained highest qualification, age of oldest dependent child and age of youngest dependent child
    • family unit and household: including a number of variables concerning the number of dependent children in the family according to their ages, relationship to head of household and relationship to head of family
    • nationality and country of origin
    • geography: including county, unitary/local authority, place of work, Nomenclature of Territorial Units for Statistics 2 (NUTS2) and NUTS3 regions, and whether lives and works in same local authority district
    • health: including main health problem, and current and past health problems
    • education and apprenticeship: including numbers and subjects of various qualifications and variables concerning apprenticeships
    • industry: including industry, industry class and industry group for main, second and last job, and industry made redundant from
    • occupation: including 4-digit Standard Occupational Classification (SOC) for main, second and last job and job made redundant from
    • system variables: including week number when interview took place and number of households at address
    The Secure Access data have more restrictive access conditions than those made available under the standard EUL. Prospective users will need to gain ONS Accredited Researcher status, complete an extra application form and demonstrate to the data owners exactly why they need access to the additional variables. Users are strongly advised to first obtain the standard EUL version of the data to see if they are sufficient for their research requirements.

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Race Disparity Unit (2022). Employment by occupation [Dataset]. https://www.ethnicity-facts-figures.service.gov.uk/work-pay-and-benefits/employment/employment-by-occupation/latest

Data from: Employment by occupation

Related Article
Explore at:
49 scholarly articles cite this dataset (View in Google Scholar)
csv(309 KB)Available download formats
Dataset updated
Jul 27, 2022
Dataset authored and provided by
Race Disparity Unit
License

Open Government Licence 3.0http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/
License information was derived automatically

Area covered
United Kingdom
Description

39.8% of workers from the Indian ethnic group were in 'professional' jobs in 2021 – the highest percentage out of all ethnic groups in this role.

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